Intelligent Platform Based on Smart PPE for Safety in Workplaces
Abstract
:1. Introduction and Motivation
2. Platform Design
3. Data Analysis and Modelling
3.1. Helmet
- Brightness,
- Variation in X, Y and Z axis,
- Force sensitive resistor,
- Temperature, humidity, pressure,
- Air quality.
3.2. Smart Bracelet with Platform
- Heart attack and irregular heartbeat,
- Extreme temperature changes leading to a heat stroke,
- Unhealthy temperature for the worker,
- Slips, trips and falls,
- Blows to the worker’s hand,
- Reporting an accident,
3.3. Smart Belt Design by Naive Bayes Classifier
- Low Battery 1,
- Z-axis difference greater than low value 2,
- Z-axis difference greater than average value 3,
- Z-axis difference greater than high value 4,
- High decibels 5,
- Panic button on 6,
- Low battery and difference on Z axis greater than low value 7,
- Low battery and difference on Z axis greater than average value 8,
- Low battery and difference on Z axis greater than high value 9,
- Low battery and high decibels 10,
- Low battery panic button activated 11,
- Difference on Z axis greater than low value and high decibels 12,
- Z-axis difference greater than mean value and high decibels 13,
- Z-axis difference greater than high value and high decibels 14,
- Z-axis difference greater than low value and emergency button activated 15,
- Z-axis difference greater than mean value and emergency button activated 16,
- Z-axis difference greater than high value and emergency button activated 17,
- Panic button activated and high decibels 18,
- Z-axis difference greater than low value and high decibels and low battery 19,
- Z-axis difference greater than mean value and high decibels and low battery 20,
- Z-axis difference greater than high value and high decibels and low battery 21.
3.4. Integration
Procedure
- The Adamic–Adar index is a measure introduced in 2003 by Lada Adamic and Eytan Adar to predict links in a social network. The Adamic–Adar of a pair of nodes and is defined as in Equation (1):
- Training: show features + value to predict;
- Using/Validating: try to predict value from features.
- Starting from a graph, we choose a set of heuristics available in the stat-of-the-art for complex networks (the most common ones are: Jaccard coefficient, Hub Promoted, Adamic Adar, etc.).
- Referring to the Jaccard Coefficient, this allows us to establish a coefficient for a specific node (defined as similarity based on the neighbourhood of the node), this value will become a characteristic for the input vector that will be used for the final modelling.
- The process is repeated by assigning a value by a heuristic to each node pair combination in the network, where at the end we will have an input vector for each node pair with a target that is identified with 0 or 1, depending on whether or not there is a link between each node pair.
- Finally, an ML model is applied to the generated data where what we are doing is weighting the response of the different artificial intelligence models represented as a complex network to reduce the classification noise in industrial and work environments. The entire process is summarised in Figure 12.
4. Discussion and Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Bibliografy | Technologies Included | Advantages and Disadvantages | Novelty of the Proposal |
---|---|---|---|
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Chamoso, Pablo, et al. (2019) | Improves interaction between users and ensures a fast and secure operation. | A multi-agent system is the base of the developed software; MAS is an essential and commonly used tool in social computing. | |
Chamoso, Pablo, et al. (2016) | The system provides a web application to manage all the review processes for power lines management. | This work is focused on the periodic review of transmission towers (TT) to avoid important risks, such as step and touch potentials, for humans. | |
Riverola, Florentino Fdez, et al. (2000) | Hybrid neuro-symbolic systems, Case-based reasoning (CBR), Artificial Neural Networks (NN) Agent Virtual organisation, Deep Learning | Classifications of these systems, paying particular attention to each subsystem’s distinctive features that make up the hybrid models. | This work is a general review of hybrid neuro-symbolic artificial intelligence systems, focusing on those composed of artificial intelligence. |
Van Den Oord, Aäron, et al. (2013) | Deep content-based focus on music. | This work is aimed at a platform based on music recommendation through deep learning. | |
Chen, Zhen-Yao, et al. (2017) | A hybrid of genetic algorithm and artificial immune system (HGAI) algorithm. | Evolutionary algorithm-based radial basis function neural network training for industrial personal computer sales forecasting. | |
Puig Ramírez, Joaquim. (2010) | The reliable detection and anticipation of performance deviations via monitoring the production and product-related process, diagnostic of possible causes and predicting the time of occurrence. | Asset optimisation and predictive maintenance in discrete manufacturing industry. | |
Mobley, R. Keith. (2002) | Predictive maintenance, Machine Train Monitoring, Industrial organisation, Production control, Supervision | The system provides maintenance methods in manufacturing or production plans. | It is a review of the methods and methodologies for carrying out predictive maintenance in industries. |
Sittón, Inés, et al. (2017) | It is aimed at the recognition and extraction of unstructured data patterns from IoT sensors. | Pattern extraction for the design of predictive models in Industry 4.0 | |
Shin, D. et al. (2016) | Use of edge computing, followed by several case studies, ranging from cloud offloading to smart home and city. | It presents several challenges and opportunities in the field of edge computing. | |
Shi, Weisong and Schahram Dustdar. (2016) | Edge computing, Real-time monitoring, Internet of Things (IoT), Protective System Smart cities and home | The success of the Internet of Things and rich cloud services have helped create edge computing. | This work is aimed at understanding edge computing technology and its multitude of applications to propose environments capable of processing information at the device level. |
Satyanarayanan, Mahadev. (2017) | Industry investment and research interest in edge computing. | It presents several research and opportunities in the field of edge computing. | |
Bibliography | Technologies Included | Advantages and Disadvantages | Novelty of the Proposal |
Sánchez, Sergio Márquez, et al. (2020) | The paper is before work that is supported by the current platform work based on ROS. | This work is based on edge computing Driven Smart Personal Protective System Deployed on NVIDIA Jetson and Integrated with ROS. | |
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Boyes, Hugh, et al. (2018) | Ambient intelligence (AI), Industrial Internet of Things (IIoT), Smart working environment (SWE), Occupational safety management, Personal Protective Equipment (PPE), Cyber-physical systems, Real-time risk assessment, | It is focused on analyses related to partial IoT taxonomies. | It develops an analysis framework for IIoT that can be used to enumerate and characterise IIoT devices. |
Sánchez, Sergio Márquez, (2019) | They seek to improve the health and safety of work sectors where there is a high risk of an accident. | Solutions made available by industry 4.0 to prevent hazards with a wireless model consists of the design of different innovative PPE. | |
Chae, Hye Seon, et al. (2017) | Smart personal protection equipment uses various biometric information from the combination of devices to allow the wearer to voluntarily recognize the danger | The research and development of the rural smart personalisation equipment for preventing farming and disaster prevention |
Device | Component | Characteristics | Description |
---|---|---|---|
Helmet | ALS-PT19 Ambient light sensor | - Supply Voltage: Vcc −0.5∼6.0 V - Vce = 5 V, Ev = 1000 Lx - Color Temperature = 6500 K | The ALS-PT19 is a low cost ambient light sensor, consisting of phototransistor in miniature SMD. |
MPU6050 | - Supply Voltage, VDD −0.5 V to +6 V - Acceleration (Any Axis, unpowered) 10,000 g for 0.2 ms - Gyroscope Features: FSR of ±250, ±500, ±1000, and 2000/s - Accelerometer Features: FSR ±2 g, ±4, ±8 and ±16 g - Nonlinearity (typ.) (A): 0.5% (G): 0.2% - Sensitivity Scale Factor: (G.typ) 131, 65.5, 32.8, 16.4 LSB (/s) (A.typ) 16.384 LSB/g, 8.192 LSB/g, 4.096 LSB/g, 2.048 LSB/g - Sensitivity Scale Factor Tolerance: (G) ±3% FSC: Full Scale Range | The MPU6050 module contains a three-axis gyroscope with which we can measure angular velocity and a 3-axis accelerometer with which we measure the X, Y and Z components of the acceleration, the accelerometer works on the piezo electric principle, it also has a temperature sensor. | |
NeoPixel Adafruit LED strip | - Supply Voltage: Vcc +6.0∼+7.0 V - Low voltage output current: 18.5 mA and 10 mA (min) - Operation Frequency: 800 KHz | Neopixel stick 8 × 5050 RGBW LEDs ∼3000 K | |
Square Force-Sensitive Resistor (FSR) | - Actuation Force ∼0.2 N min - Force Sensitivity Range: ∼0.2 N–20 N - Force Repeatability Single Part +/− 2% - Force Repeatability Part to Part +/− 6% (Single Batch) | FSRs are sensors that allow you to detect physical pressure, squeezing and weight. | |
BME680 | - Digital interface I2C (up to 3.4 MHz) and SPI (3 and 4 wire, up to 10 MHz) - Supply voltage: VDD: 1.71 V to 3.6 V - VDDIO: 1.2 V to 3.6 V - Operating range −40–+85 °C, 0–100% r.H., 300–1100 hPa | The BME680 is a digital 4-in-1 sensor with gas, humidity, pressure and temperature measurement based on proven sensing principles. | |
Belt | MPU6050 | - Supply Voltage, VDD −0.5 V to +6 V - Acceleration (Any Axis, unpowered) 10,000 g for 0.2 ms - Gyroscope Features: FSR of ±250, ±500, ±1000, and 2000/s - Accelerometer Features: FSR ±2 g, ±4 g, ±8 g and ±16 g - Nonlinearity (typ.) (A): 0.5% (G): 0.2% - Sensitivity Scale Factor: (G.typ) 131, 65.5, 32.8, 16.4 LSB (/s) (A.typ) 16.384 LSB/g, 8.192 LSB/g, 4.096 LSB/g, 2.048 LSB/g - Sensitivity Scale Factor Tolerance: (G) ±3% FSC: Full Scale Range | The MPU6050 module contains a three-axis gyroscope with which we can measure angular velocity and a 3-axis accelerometer with which we measure the X, Y and Z components of the acceleration, the accelerometer works on the piezo-electric principle, it also has a temperature sensor. |
KY-038 sensor | Analogue Signal, VDD: 3.3 V | Microphone sound sensor module | |
Bracelet | Thermocouple Type-K | - Precision: ±1 °C - Output range: −6 to 20 mV | Glass braid insulated stainless steel tip, which can be used in high temperature. |
Heart Rate Monitor Sensor | - Input Voltage (Vin): 3.3–6 V (5V recommended) - Output Voltage: 0 - Vin (Analogue), 0/ Vin (Digital) - Operating current: <10 mA | It is based on PPG techniques, to detect blood volume changing in the microvascular bed of tissues. | |
BMI160 Inertial sensor (IMU) | - Sensitivity (typ.) Acc. ±2 g: 16,384, ±4 g: 8192, ±8 g: 4096, ±16 g: 2048 LSB/g - Sensitivity (typ.) Gyro. ±125/s: 262.4, ±250/s: 131.2, ±500/s: 65.6 LSB//s - TCS (typ.) (A): ±0.03%/K (G): ±0.02%/K - Nonlinearity (typ.) (A): 0.5 %FS (G): 0.1 %FS - Offset (typ.) (A): ±40 mg (G): ±3/s - TCO (typ.) (A): ±1.0 mg/K (G): 0.05/s/K | It is an inertial measurement unit (IMU) consisting of a state-of-art 3 axis, low-g accelerometer and a low power 3 axis gyroscope. | |
Square Force-Sensitive Resistor (FSR) | - Actuation Force ∼0.2 N min - Force Sensitivity Range: ∼0.2 N–20 N - Force Repeatability Single Part +/− 2% - Force Repeatability Part to Part +/− 6% (Single Batch) | FSRs are sensors that allow you to detect physical pressure, squeezing and weight. |
Label | Meaning in the Model |
---|---|
0 | Good for health air (AQI from 0 to 50) with sufficient illumination in the working environment. |
1 | Moderate air quality (AQI of 51 to 100) with slight variation in temperature and humidity. |
2 | Harmful air to health for sensitive groups (AQI 101–150) with moderate variation in temperature and humidity. |
3 | Harmful air to health (AQI 151 to 200) with considerable variation in temperature and humidity |
4 | Very harmful air to health (AQI 201 to 300) with high variation in temperature and humidity. |
5 | Hazardous air (AQI greater than 300) with atypical variation in temperature and humidity. |
6 | Lack of illumination and variation equivalent to a fall in axes. |
7 | Lack of illumination and variation equivalent to a fall in axes and considerable force exerted on the helmet. |
8 | Atypical variation on the detected axes and moderate force detected on the FSR. |
9 | Illumination problems, air quality and sudden variation in axes. |
10 | Very high force exerted on the FSR. |
11 | Variation in axes with illumination problems. |
12 | Outliers on the 5 sensors |
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Márquez-Sánchez, S.; Campero-Jurado, I.; Herrera-Santos, J.; Rodríguez, S.; Corchado, J.M. Intelligent Platform Based on Smart PPE for Safety in Workplaces. Sensors 2021, 21, 4652. https://doi.org/10.3390/s21144652
Márquez-Sánchez S, Campero-Jurado I, Herrera-Santos J, Rodríguez S, Corchado JM. Intelligent Platform Based on Smart PPE for Safety in Workplaces. Sensors. 2021; 21(14):4652. https://doi.org/10.3390/s21144652
Chicago/Turabian StyleMárquez-Sánchez, Sergio, Israel Campero-Jurado, Jorge Herrera-Santos, Sara Rodríguez, and Juan M. Corchado. 2021. "Intelligent Platform Based on Smart PPE for Safety in Workplaces" Sensors 21, no. 14: 4652. https://doi.org/10.3390/s21144652
APA StyleMárquez-Sánchez, S., Campero-Jurado, I., Herrera-Santos, J., Rodríguez, S., & Corchado, J. M. (2021). Intelligent Platform Based on Smart PPE for Safety in Workplaces. Sensors, 21(14), 4652. https://doi.org/10.3390/s21144652